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首页> 外文期刊>BMC proceedings. >Identity-by-descent filtering as a tool for the identification of disease alleles in exome sequence data from distant relatives
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Identity-by-descent filtering as a tool for the identification of disease alleles in exome sequence data from distant relatives

机译:逐次滤波作为遥远亲属exome序列数据中疾病等位基因鉴定的工具

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Large-scale, deep resequencing may be the next logical step in the genetic investigation of common complex diseases. Because each individual is likely to carry many thousands of variants, the identification of causal alleles requires an efficient strategy to reduce the number of candidate variants. Under many genetic models, causal alleles can be expected to reside within identity-by-descent (IBD) regions shared by affected relatives. In distant relatives, IBD regions constitute a small portion of the genome and can thus greatly reduce the search space for causal alleles. However, the effectiveness of this strategy is unknown. We test the simulated mini-exome data set in extended pedigrees provided by Genetic Analysis Workshop 17. At the fourth- and fifth-degree level of relatedness, case-case pairs shared between 1% and 9% of the genome identical by descent. As expected, no genes were shared identical by descent by all case subjects, but 43 genes were shared by many case subjects across at least 50 replicates. We filtered variants in these genes based on population frequency, function, informativeness, and evidence of association using the family-based association test. This analysis highlighted five genes previously implicated in triglyceride, lipid, and cholesterol metabolism. Comparison with the list of true risk alleles revealed that strict IBD filtering followed by association testing of the rarest alleles was the most sensitive strategy. IBD filtering may be a useful strategy for narrowing down the list of candidate variants in exome data, but the optimal degree of relatedness of affected pairs will depend on the genetic architecture of the disease under study.
机译:大规模,深度重试可能是常见复杂疾病遗传调查中的下一个逻辑步骤。因为每个人都可能携带数千个变体,所以原因等位基因的识别需要有效的策略来减少候选变体的数量。在许多遗传模型下,可以预期因果等位基因居住在受影响亲属共享的逐次(IBD)区域内。在遥远的亲属中,IBD区域构成了基因组的一小部分,因此可以大大减少因果等位基因的搜索空间。然而,这种策略的有效性未知。我们在遗传分析研讨会上提供的扩展章程中测试模拟的迷你exome数据集合17.在相关的第四和第五层的相关性水平,病例对在血统上相同的基因组的1%至9%之间。正如预期的那样,所有案例受试者所述,没有共享相同的基因,但在至少50个重复中,许多案例受试者共用43个基因。使用基于基于家庭的关联测试,我们基于人口频率,功能,信息性以及关联的综合证据过滤了这些基因的变体。该分析突出了先前含有甘油三酯,脂质和胆固醇代谢的五个基因。与真正风险等位基因列表的比较显示,严格的IBD滤波,然后是稀有等位基因的关联测试是最敏感的策略。 IBD滤波可能是缩小外壳数据中候选变体列表的有用策略,但受影响对的最佳相关性程度将取决于在研究中的疾病的遗传结构。

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